Toward Global Optimization of Case-Based Reasoning Systems for Financial Forecasting
作者:Kyoung-jae Kim
摘要
This paper presents a simultaneous optimization method of a case-based reasoning (CBR) system using a genetic algorithm (GA) for financial forecasting. Prior research proposed many hybrid models of CBR and the GA for selecting a relevant feature subset or optimizing feature weights. Most research used the GA for improving only a part of architectural factors of the CBR model. However, the performance of the CBR model may be enhanced when these factors are simultaneously considered. In this study, the GA simultaneously optimizes multiple factors of the CBR system. Experimental results show that a GA approach to simultaneous optimization of the CBR model outperforms other conventional approaches for financial forecasting.
论文关键词:simultaneous optimization, case-based reasoning, genetic algorithms, feature discretization, financial forecasting
论文评审过程:
论文官网地址:https://doi.org/10.1023/B:APIN.0000043557.93085.72